An Incremental Self-Adaptive Wood Species Classification Prototype System

The present wood species classification systems can usually process the limited wood species quantity. We propose a novel incremental self-adaptive wood species classification system to solve the above-mentioned issue. The visible/near-infrared (VIS/NIR) spectrometer is used to pick up the spectral...

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Main Authors: Peng Zhao, Zhen-Yu Li, Yue Li
Format: Article
Language:English
Published: Wiley 2019-01-01
Series:Journal of Spectroscopy
Online Access:http://dx.doi.org/10.1155/2019/9247386
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author Peng Zhao
Zhen-Yu Li
Yue Li
author_facet Peng Zhao
Zhen-Yu Li
Yue Li
author_sort Peng Zhao
collection DOAJ
description The present wood species classification systems can usually process the limited wood species quantity. We propose a novel incremental self-adaptive wood species classification system to solve the above-mentioned issue. The visible/near-infrared (VIS/NIR) spectrometer is used to pick up the spectral curves of wood samples for the subsequent wood species classification. First, when new wood samples of unknown wood species are added, they are classified as an unknown category by our one-class classifier, Support Vector Data Description (SVDD), while the existent wood species are classified as a known category by the SVDD. Second, the wood samples of known species are sent into the BP neural network for subsequent wood species classification. Third, the new wood samples of unknown species are sent into the Clustering by Fast Search and Find of Density Peaks (CFSFDP) algorithm for the unsupervised clustering, and the clustering result is evaluated by the internal and external norms. Last, if one cluster of one unknown species has an adequate amount of wood samples, these wood samples are removed and identified by human experts or other schemes to ensure to get the correct wood species name. Then, these wood samples are considered as a new known species and are sent into the classifiers, SVDD and BP neural network, to train them again. Experiments on 13 wood species prove the effectiveness of our prototype system with an overall classification accuracy of above 95%.
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spelling doaj-art-176ca4cec5444901bc7b961e465a9ec82025-02-03T01:10:11ZengWileyJournal of Spectroscopy2314-49202314-49392019-01-01201910.1155/2019/92473869247386An Incremental Self-Adaptive Wood Species Classification Prototype SystemPeng Zhao0Zhen-Yu Li1Yue Li2Information and Computer Engineering College, Northeast Forestry University, Harbin City 150040, ChinaInformation and Computer Engineering College, Northeast Forestry University, Harbin City 150040, ChinaInformation and Computer Engineering College, Northeast Forestry University, Harbin City 150040, ChinaThe present wood species classification systems can usually process the limited wood species quantity. We propose a novel incremental self-adaptive wood species classification system to solve the above-mentioned issue. The visible/near-infrared (VIS/NIR) spectrometer is used to pick up the spectral curves of wood samples for the subsequent wood species classification. First, when new wood samples of unknown wood species are added, they are classified as an unknown category by our one-class classifier, Support Vector Data Description (SVDD), while the existent wood species are classified as a known category by the SVDD. Second, the wood samples of known species are sent into the BP neural network for subsequent wood species classification. Third, the new wood samples of unknown species are sent into the Clustering by Fast Search and Find of Density Peaks (CFSFDP) algorithm for the unsupervised clustering, and the clustering result is evaluated by the internal and external norms. Last, if one cluster of one unknown species has an adequate amount of wood samples, these wood samples are removed and identified by human experts or other schemes to ensure to get the correct wood species name. Then, these wood samples are considered as a new known species and are sent into the classifiers, SVDD and BP neural network, to train them again. Experiments on 13 wood species prove the effectiveness of our prototype system with an overall classification accuracy of above 95%.http://dx.doi.org/10.1155/2019/9247386
spellingShingle Peng Zhao
Zhen-Yu Li
Yue Li
An Incremental Self-Adaptive Wood Species Classification Prototype System
Journal of Spectroscopy
title An Incremental Self-Adaptive Wood Species Classification Prototype System
title_full An Incremental Self-Adaptive Wood Species Classification Prototype System
title_fullStr An Incremental Self-Adaptive Wood Species Classification Prototype System
title_full_unstemmed An Incremental Self-Adaptive Wood Species Classification Prototype System
title_short An Incremental Self-Adaptive Wood Species Classification Prototype System
title_sort incremental self adaptive wood species classification prototype system
url http://dx.doi.org/10.1155/2019/9247386
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